Performance of Euler-Maruyama, 2-Stage SRK and 4-Stage SRK in approximating the strong solution of stochastic model

Stochastic differential equations play a prominent role in many application areas including finance, biology and epidemiology. By incorporating random elements to ordinary differential equation system, a system of stochastic differential equations (SDEs) arises. This leads to a more complex insight...

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Main Authors: Rosli, Norhayati, Bahar, Arifah, Su Hoe, Yeak, Abdul Rahman, Haliza, Md. Salleh, Madihah
Format: Article
Published: Faculty of Science and Technology, UKM 2010
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Online Access:http://eprints.utm.my/id/eprint/26007/
http://www.ukm.my/jsm/pdf_files/SM-PDF-39-5-2010/24%20Norhayati.pdf
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spelling my.utm.260072018-11-30T06:23:00Z http://eprints.utm.my/id/eprint/26007/ Performance of Euler-Maruyama, 2-Stage SRK and 4-Stage SRK in approximating the strong solution of stochastic model Rosli, Norhayati Bahar, Arifah Su Hoe, Yeak Abdul Rahman, Haliza Md. Salleh, Madihah Q Science (General) Stochastic differential equations play a prominent role in many application areas including finance, biology and epidemiology. By incorporating random elements to ordinary differential equation system, a system of stochastic differential equations (SDEs) arises. This leads to a more complex insight of the physical phenomena than their deterministic counterpart. However, most of the SDEs do not have an analytical solution where numerical method is the best way to resolve this problem. Recently, much work had been done in applying numerical methods for solving SDEs. A very general class of Stochastic Runge-Kutta, (SRK) had been studied and 2-stage SRK with order convergence of 1.0 and 4-stage SRK with order convergence of 1.5 were discussed. In this study, we compared the performance of Euler-Maruyama, 2-stage SRK and 4-stage SRK in approximating the strong solutions of stochastic logistic model which describe the cell growth of C. acetobutylicum P262. The MS-stability functions of these schemes were calculated and regions of MS-stability are given. We also perform the comparison for the performance of these methods based on their global errors. Faculty of Science and Technology, UKM 2010 Article PeerReviewed Rosli, Norhayati and Bahar, Arifah and Su Hoe, Yeak and Abdul Rahman, Haliza and Md. Salleh, Madihah (2010) Performance of Euler-Maruyama, 2-Stage SRK and 4-Stage SRK in approximating the strong solution of stochastic model. Jurnal Sains Malaysiana, 39 (5). pp. 851-857. ISSN 0126-6039 http://www.ukm.my/jsm/pdf_files/SM-PDF-39-5-2010/24%20Norhayati.pdf
institution Universiti Teknologi Malaysia
building UTM Library
collection Institutional Repository
continent Asia
country Malaysia
content_provider Universiti Teknologi Malaysia
content_source UTM Institutional Repository
url_provider http://eprints.utm.my/
topic Q Science (General)
spellingShingle Q Science (General)
Rosli, Norhayati
Bahar, Arifah
Su Hoe, Yeak
Abdul Rahman, Haliza
Md. Salleh, Madihah
Performance of Euler-Maruyama, 2-Stage SRK and 4-Stage SRK in approximating the strong solution of stochastic model
description Stochastic differential equations play a prominent role in many application areas including finance, biology and epidemiology. By incorporating random elements to ordinary differential equation system, a system of stochastic differential equations (SDEs) arises. This leads to a more complex insight of the physical phenomena than their deterministic counterpart. However, most of the SDEs do not have an analytical solution where numerical method is the best way to resolve this problem. Recently, much work had been done in applying numerical methods for solving SDEs. A very general class of Stochastic Runge-Kutta, (SRK) had been studied and 2-stage SRK with order convergence of 1.0 and 4-stage SRK with order convergence of 1.5 were discussed. In this study, we compared the performance of Euler-Maruyama, 2-stage SRK and 4-stage SRK in approximating the strong solutions of stochastic logistic model which describe the cell growth of C. acetobutylicum P262. The MS-stability functions of these schemes were calculated and regions of MS-stability are given. We also perform the comparison for the performance of these methods based on their global errors.
format Article
author Rosli, Norhayati
Bahar, Arifah
Su Hoe, Yeak
Abdul Rahman, Haliza
Md. Salleh, Madihah
author_facet Rosli, Norhayati
Bahar, Arifah
Su Hoe, Yeak
Abdul Rahman, Haliza
Md. Salleh, Madihah
author_sort Rosli, Norhayati
title Performance of Euler-Maruyama, 2-Stage SRK and 4-Stage SRK in approximating the strong solution of stochastic model
title_short Performance of Euler-Maruyama, 2-Stage SRK and 4-Stage SRK in approximating the strong solution of stochastic model
title_full Performance of Euler-Maruyama, 2-Stage SRK and 4-Stage SRK in approximating the strong solution of stochastic model
title_fullStr Performance of Euler-Maruyama, 2-Stage SRK and 4-Stage SRK in approximating the strong solution of stochastic model
title_full_unstemmed Performance of Euler-Maruyama, 2-Stage SRK and 4-Stage SRK in approximating the strong solution of stochastic model
title_sort performance of euler-maruyama, 2-stage srk and 4-stage srk in approximating the strong solution of stochastic model
publisher Faculty of Science and Technology, UKM
publishDate 2010
url http://eprints.utm.my/id/eprint/26007/
http://www.ukm.my/jsm/pdf_files/SM-PDF-39-5-2010/24%20Norhayati.pdf
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